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A Multi-modal Deep Learning Method for Classifying Chest Radiology Exams

机译:一种用于胸部放射科考试分类的多模式深度学习方法

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Non-invasive medical imaging techniques, such as radiography or computed tomography, are extensively used in hospitals and clinics for the diagnosis of diverse injuries or diseases. However, the interpretation of these images, which often results in a free-text radiology report and/or a classification, requires specialized medical professionals, leading to high labor costs and waiting lists. Automatic inference of thoracic diseases from the results of chest radiography exams, e.g. for the purpose of indexing these documents, is still a challenging task, even if combining images with the free-text reports. Deep neural architectures can contribute to a more efficient indexing of radiology exams (e.g., associating the data to diagnostic codes), providing interpretable classification results that can guide the domain experts. This work proposes a novel multi-modal approach, combining a dual path convolutional neural network for processing images with a bidirectional recurrent neural network for processing text, enhanced with attention mechanisms and leveraging pre-trained clinical word embeddings. The experimental results show interesting patterns, e.g. validating the high performance of the individual components, and showing promising results for the multi-modal processing of radiology examination data, particularly when pre-training the components of the model with large pre-existing datasets (i.e., a 10% increase in terms of the average value for the areas under the receiver operating characteristic curves).
机译:无创医学成像技术,例如放射线照相或计算机断层扫描,已广泛用于医院和诊所,以诊断各种伤害或疾病。但是,对这些图像的解释通常会导致产生自由文本的放射学报告和/或分类,因此需要专业的医疗专业人员,从而导致高昂的人工成本和等待名单。根据胸部X光检查的结果自动推断胸腔疾病为了将这些文档编入索引,即使将图像与自由文本报告结合起来,仍然是一项艰巨的任务。深度神经架构可以帮助放射检查更有效地索引(例如,将数据与诊断代码相关联),提供可解释的分类结果,以指导领域专家。这项工作提出了一种新颖的多模式方法,将用于处理图像的双路径卷积神经网络与用于处理文本的双向递归神经网络相结合,并通过注意机制进行了增强,并利用了预训练的临床词嵌入技术。实验结果显示出有趣的模式,例如验证单个组件的高性能,并为放射检查数据的多模式处理显示出令人鼓舞的结果,尤其是在使用大型现有数据集对模型的组件进行预训练时(即,将接收器工作特性曲线下面积的平均值)。

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